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Home › Publications › Integration of phenotypic metadata and protein similarity in Archaea using a spectral bipartitioning approach

Integration of phenotypic metadata and protein similarity in Archaea using a spectral bipartitioning approach

Published in:

Nucleic Acids Research 37(7) , 2096-2104 (Apr 2009)

Author(s):

Hooper, S. D., Anderson, I. J., Pati, A., Dalevi, D., Mavromatis, K., Kyrpides, N. C.

DOI:

Doi 10.1093/Nar/Gkp075

Abstract:

In order to simplify and meaningfully categorize large sets of protein sequence data, it is commonplace to cluster proteins based on the similarity of those sequences. However, it quickly becomes clear that the sequence flexibility allowed a given protein varies significantly among different protein families. The degree to which sequences are conserved not only differs for each protein family, but also is affected by the phylogenetic divergence of the source organisms. Clustering techniques that use similarity thresholds for protein families do not always allow for these variations and thus cannot be confidently used for applications such as automated annotation and phylogenetic profiling. In this work, we applied a spectral bipartitioning technique to all proteins from 53 archaeal genomes. Comparisons between different taxonomic levels allowed us to study the effects of phylogenetic distances on cluster structure. Likewise, by associating functional annotations and phenotypic metadata with each protein, we could compare our protein similarity clusters with both protein function and associated phenotype. Our clusters can be analyzed graphically and interactively online.

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